How to exclude points when calculating the normalized cross correlation coefficients with normxcorr2?
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I am using the normalized cross correlation coefficients function; normxcorr2(template, A)
to to compute the normalized cross correlation coefficients. My two images have been gathered with microscope and bright white pixels(FillValue 1) represent no data. Is there a way I could utilize the normxcorr2 to get the normalized cross correlation coefficients for all pixels but excluding the bright white ones?
Thanks, Shayan
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Image Analyst
el 15 de Jul. de 2011
Perhaps you can set the bad pixels to NaN - MATLAB often seems to harmlessly ignore such values when it does computations.
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Sean de Wolski
el 15 de Jul. de 2011
That won't work because it expects the template to be finite:
A = magic(3);
B = padarray(magic(3),[10 10])
A(5) = nan
normxcorr2(A,B)
??? Error using ==> iptcheckinput
Function NORMXCORR2 expected its first input, T, to be finite.
Error in ==> normxcorr2>ParseInputs at 231
iptcheckinput(T,{'logical','numeric'},{'real','nonsparse','2d','finite'},mfilename,'T',1)
Error in ==> normxcorr2 at 55
[T, A] = ParseInputs(varargin{:});
Sean de Wolski
el 15 de Jul. de 2011
I think I would start by creating a second image with the bright white pixels interpolated over.
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nxcorr formula
It should be easy enough to implement this formula using nanmean, nanstd, and nansum (either with stats toolbox or available here: fex:nan_suite. Slide the template over every possible combination using double- for-loops; calculate the nxcorr and then find the highest value.
bart
el 29 de Mayo de 2013
Hellò, I have a similar problem. I cannot use an interpolation solution for precision reason too. Anyone could post a nannormxcorr2 function? I'm neophyte with matlab and i've some difficult to modify normxcorr2.. I tried modifying with nanmean, nanstd, nansum, nancumsum, conv2nan etc.. but it doesn't work. I suppose that is not so simple.
Thanks, Berto.
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